The Relevance of IoT and Big Data Analytics in Semiconductor Manufacturing Duncan Lee Intel Technology Sdn. Bhd. Manufacturing IT Principal Engineer
Agenda Intel IOT Factory Story Why We Are Still Interested In The Internet Of Things Examples of New Cases Of Internet Of Things Signals Based Preventive Maintenance Analytics Tools Summary
IoT and The Intel Factory Story 80 s Factory 90 s Factory No robotic material transport Run cards on wafer boxes Basic equipment standards Initial equipment control Initial manufacturing execution solution Beginning robotic material transport (FAB) Automated statistical process control Improved equipment control Improved inventory control and tracking Improved equipment automation standards Integrated manufacturing execution solutions Planning and supply chain integration 3 Improved decision making systems
IoT and The Intel Factory Story Today s Factory Pervasive robotic material transport (FAB) Pervasive equipment standardization Advanced manufacturing execution solutions Real-time excursion control Advanced process control & adjustment Predictive and Adaptive maintenance Advanced inventory control and tracking Advanced rapid decision making World class supply chain capabilities Big data repositories Quark integration with industrial equipment Intel Confidential for NDA Customers Only 4
IoT and The Intel Factory Story Technology, process, and manufacturing challenges cause new data needs with associated analytics. Each new need drives Intel Manufacturing IT to lay new conduit to extract new data, pipe it to real time systems, house it in large databases, and replicate it to offline data warehouses for decision support and analytics. Server Storage Analytics Building a connected end-to-end technology solution to address process technology needs... over and over again. Reporting Intel Confidential for NDA Customers Only 5
Intel s IoT Factory : Highly Instrumented & Highly Connected Production Tool Desktop PC Middleware Cluster Factory Application Clusters Data Storage RFID read for location and product check Industry Standard Protocols Temperature, pressure, vacuum, carrier ID, alarms etc... Manufacturing Execution Statistical Process Control Excursion Protection Yield Analysis Data Replication OLTP DB OLTP DB OLTP DB DSS DB DSS DB DSS DBs Gateways to Supplement Advanced Process Control Reporting Automated Material Handling (FAB) Web Cluster Material Handling Control... OLTP = On Line Transaction Processing DSS = Decision Support System RFID = Radio Frequency Identification Intel Confidential for NDA Customers Only 6
Why Are We Still Interested in the Internet of Things? With billions invested in semiconductor process equipment, the Internet of Things (IoT) is leveraged to: Reduce capital cost Increase quality Improve time to market Regardless of the industry, we all share these same challenges and goals.
New IoT Use Cases in the Intel Factory IoT is used in the factory to: 1. Enable older, unconnected, and/or standalone tools to be connected and smarter 2. Enable external sensors to be connected where needed 3. Tap into internal machine sensors and circuits 4. Monitoring environmental conditions, i.e. temperature, humidity, power usage at a machine. 5. Tag important or high value items in the factory to enable in-house GPS
EXAMPLE OF IOT USE CASES
Enable Older, Unconnected Standalone Tools Chemcab: Monitor chemical use and temperature Eliminate the need for humans to manually monitor and collect readings Reduce unexpected tool downtime when chemical empties faster than expected or chemical temperature fluctuates unexpectedly
Enable External Sensors Self-healing frost alleviation in enclosed chamber Humidity exposure and cold temperature during a process causes condensation. This situation is alleviated through constant monitoring of the humidity and temperature inside the chamber. Certain humidity and temperature will trigger dry air purge.
Tap into Internal Machine Sensors and Circuits Preventive detection of potential oven coil failure Analyzing the energy usage through monitoring relay performance to predict potential oven coil failure. This enables engineers to fix the faulty coils before causing a product excursion.
Signals Based Preventive Maintenance.
Data Analytics D X Equipment Process Quality Human MATERIAL MATERIAL I N O U T D 1 I N O U T D 2 I N MATERIAL O U T D 1 Scenarios Predictive Maintenance Product Quality. Data Analysis Various Data Within Machine Between Machines in Family Between Different Machines Different Scenario, Different Analytics, Lots of Data Needed
Tools Finding Correlations Open Source Tools Lots of mining tools available Statistics, Machine Learning and Deep Learning
Summary Smart Factories continuously use IOT and edge (PCs etc.) enabled machines and Factory Data Analytics(statistics, spc, pcs, machine learning, deep learning) to improve factory operations and management.
Learn More / Q&A Related White Papers: Improving Manufacturing with Advanced Data Analytics Joining IoT with Advanced Data Analytics to Improve Manufacturing Results Integrating IoT Sensor Technology into the Enterprise Broadening Access to Advanced Analytics in the Enterprise Internet of Things (IoT) Delivers Business Value to Manufacturing Collaborative Visual Data Analysis Enables Faster, Better Decisions Using Big Data in Manufacturing at Intel s Smart Factories 2015-2016 Intel IT Performance Report Be a member of our community: Intel IT Center Intel IT Best Practices: www.intel.com/it Read articles from Intel IT Experts: Intel IT Peer Network Contact Intel s online sales department at osclmapac@intel.com If provided link doesn t work, search the web using the title.